Transient frequency response test and measurement error prediction of DCTV based on adaptive inertial weight improved ACO

Yutao Yang, Shaolei Zhai, Hansong Tang, Genyue Duan, Liwu Deng
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Abstract

A temporary frequency response test and measurement error prediction method of direct current voltage transformer (DCTV) based on artificial intelligence (AI) is proposed. Firstly, the frequency characteristic of direct current (DC) side voltage of DCTV is analyzed. On this basis, a DCTV transient Frequency Response testing method based on transient alternating current (AC) & DC superposition was developed. Then, the method of voltage sudden change and phase correction is used to achieve transient process DCTV response time testing. Finally, the ant colony optimization (ACO) algorithm was improved by combining an adaptive inertia weight improvement strategy, achieving accurate prediction of the Measurement Error of DCTV. The proposed AI based DCTV transient Frequency Response testing and Measurement Error prediction method were compared and analyzed with the other three methods through simulation experiments. Compared to the other three comparison methods, the maximum transformation error in the evaluation indicators of mean squared error (MSE), root mean squared error (RMSE), and mean absolute error (MAE) decreased by 0.006, 0.0119, and 0.0085, respectively, while the maximum phase error decreased by 0.2794, 0.3004, and 0.2823, respectively.
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基于自适应惯性权重改进 ACO 的 DCTV 瞬态频率响应测试和测量误差预测
提出了一种基于人工智能(AI)的直流电压互感器(DCTV)临时频率响应测试和测量误差预测方法。首先,分析了直流电压互感器直流侧电压的频率特性。在此基础上,开发了基于瞬态交流(AC)和直流(DC)叠加的 DCTV 瞬态频率响应测试方法。然后,利用电压突变和相位校正的方法来实现瞬态过程 DCTV 响应时间测试。最后,结合自适应惯性权重改进策略,改进了蚁群优化(ACO)算法,实现了对 DCTV 测量误差的精确预测。通过仿真实验,将所提出的基于人工智能的 DCTV 瞬态频率响应测试和测量误差预测方法与其他三种方法进行了比较和分析。与其他三种比较方法相比,均方误差(MSE)、均方根误差(RMSE)和平均绝对误差(MAE)等评价指标中的最大变换误差分别降低了0.006、0.0119和0.0085,最大相位误差分别降低了0.2794、0.3004和0.2823。
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